16 February 2021A novel physics-based data augmentation approach for improved robust deep learning in medical imaging: lung nodule CAD false positive reduction in low-dose CT environments
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A novel physics-based data augmentation (PBDA) is introduced, to provide a representative approach to introducing variance during training of a deep-learning model. Compared to traditional geometric-based data augmentation (GBDA), we hypothesize that PBDA will provide more realistic variation representative of potential imaging conditions that may be seen beyond the initial training data, and thereby train a more robust model (particularly in the scope of medical imaging). PBDA is tested in the context of false-positive reduction in nodule detection in low-dose lung CT and is shown to exhibit superior performance and robustness across a wide range of imaging conditions.
M. W. Wahi-Anwar,N. Emaminejad,Y. Choi,H. G. Kim,W. Hsu,M. S. Brown, andM. F. McNitt-Gray
"A novel physics-based data augmentation approach for improved robust deep learning in medical imaging: lung nodule CAD false positive reduction in low-dose CT environments", Proc. SPIE 11595, Medical Imaging 2021: Physics of Medical Imaging, 115950G (16 February 2021); https://doi.org/10.1117/12.2582126
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M. W. Wahi-Anwar, N. Emaminejad, Y. Choi, H. G. Kim, W. Hsu, M. S. Brown, M. F. McNitt-Gray, "A novel physics-based data augmentation approach for improved robust deep learning in medical imaging: lung nodule CAD false positive reduction in low-dose CT environments," Proc. SPIE 11595, Medical Imaging 2021: Physics of Medical Imaging, 115950G (16 February 2021); https://doi.org/10.1117/12.2582126